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Neha Tikoo, Lovely Professional University             Unit 3: Linear Programming Problem – Simplex Method





           Unit 3: Linear Programming Problem – Simplex Method                                  Notes


            CONTENTS
            Objectives
            Introduction
            3.1  Simplex Method of Linear Programming
                 3.1.1  Maximisation Cases
                 3.1.2  Minimization Cases
            3.2  Big 'M' Method

            3.3  Unconstrained Variables
                 3.3.1  Change in Objective Function Coefficients and Effect on Optimal Solution
                 3.3.2  Change in the Right-hand Side Constraints Values and Effect on Optimal
                        Solution
            3.4  Special Cases in Linear Programming
                 3.4.1  Multiple or Alternative Optimal Solutions
                 3.4.2  Unbounded Solutions
                 3.4.3  Infeasibility

            3.5  Summary
            3.6  Keywords
            3.7  Review Questions
            3.8  Further Readings

          Objectives

          After studying this unit, you will be able to:

              Understand the meaning of word 'simplex' and logic of using simplex method
              Know how to convert a LPP into its standard form by adding slack, surplus and artificial
               variables

              Learn how to solve the LPP with the help of Big M methodology
              Understand the significance of duality concepts in LPP and ways to solve duality problems

          Introduction

          In practice, most problems contain more than two variables and are consequently too large to be
          tackled by conventional means. Therefore, an algebraic technique is used to solve large problems
          using Simplex Method. This method is carried out through iterative process systematically step
          by step, and finally the maximum or minimum values of the objective function are attained.
          The simplex method solves the linear programming problem in iterations to improve the value
          of the objective function. The simplex approach not only yields the optimal solution but also
          other valuable information to perform economic and 'what if' analysis.





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